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Title: Math 1530 Elements of Statistics


1
Math 1530 Elements of Statistics
  • Chapter 9
  • Hypothesis Tests for One Population Mean

1
1
2
Example
  • Suppose a company produces a bags of pretzels,
    claiming that the average mass per bag is 454 g
    with a standard deviation of 7.8 g.
  • The quality assurance guys samples 25 random bags
    and finds an average mass of 450g.
  • Is there any reason to be concerned?
  • Use a method called hypothesis testing to answer
    the question above.

3
Definitions
  • A hypothesis is an assumption which may or may
    not be true.
  • In our example, our hypothesis would be the
    average mass of bag of pretzel is 454 g.

4
Definitions
  • Null hypothesis
  • A hypothesis to be tested
  • denoted by H0
  • When testing hypothesis about population means,
    the null hypothesis takes the form
  • H0 µ µ0 where µ0 is some number
  • For our example, the null hypothesis would be
  • H0 µ 454 g

5
Definitions
  • Alternative hypothesis
  • A hypothesis considered as an alternative to the
    null hypothesis.
  • It is a new idea.
  • denoted by Ha
  • When testing hypothesis about population means,
    the alternative hypothesis takes one of the three
    forms.
  • Two-tailed hypothesis test The population mean
    is different from a specific value.
  • Left-tailed hypothesis test The population mean
    is less than a specific value.
  • Right-tailed hypothesis test The population mean
    is greater than a specific value.
  • A hypothesis test is called a one-tailed test if
    it is either left tailed or right tailed.

6
Examples
  • Pg 385
  • Q 9.6
  • Q 9.8
  • Q 9.10

7
Basic Logic of Hypothesis Testing
  • Take a random sample from the population.
  • If sample data are consistent with the null
    hypothesis, do not reject H0.
  • If sample data are inconsistent with H0 (in the
    direction of the alternative hypothesis), reject
    H0 in favor of Ha.

8
Example Pretzels
  • A company uses a machine to produce bags of
    pretzels with mean mass 454 g. Assume that the
    net weight of bags is normally distributed. The
    Quality Assurance guys would like to test the
    working of the machine. They randomly pick 25
    bags whose masses are shown in the table. Does
    the data provide sufficient evidence to conclude
    that the machine is not working properly?
  • Assume the masses of the pretzel bags have a
    normal distribution with standard deviation 7.8
    g.

Taken from Elements of Statistics, by Neil Weiss
  • State H0 and Ha.
  • Discuss the logic behind the test.
  • What is the distribution of for samples of
    size 25?

9
Criterion for rejecting H0 in favor of Ha
  • If the mean weight, , of the 25 bags of
    pretzels sampled is more than two standard
    deviations (3.12 g) from 454 g, reject the null
    hypothesis and conclude that the alternative
    hypothesis is true. Otherwise, do not reject the
    null hypothesis.

Taken from Elements of Statistics, by Neil Weiss
10
Apply this Criterion to the sample data
  • The mean weight, , of the sample of 25 bags of
    pretzels whose weights are given is 450g.
  • So, z ( - 454) / 1.56 (450 - 454) /1.56
    -2.56.
  • Thus, the sample mean of 450 g is 2.56 standard
    deviations below the null-hypothesis population
    mean of 454 g, as shown in the figure

Taken from Elements of Statistics, by Neil Weiss
11
Terminology for Hypothesis Tests
  • The test statistic is the statistic used for
    deciding whether or not the null hypothesis
    should be rejected.
  • Rejection region is the set of values for the
    test statistic that leads to the rejection of the
    null hypothesis.
  • Non-Rejection region is the set of values for the
    test statistic that leads to the non-rejection of
    the null hypothesis.
  • Critical values are the numbers that separate the
    rejection and non-rejection regions.

12
Rejection Regions and Critical Values
Taken from Elements of Statistics, by Neil Weiss
13
Type I and Type II Error
  • The significance level is the probability of
    making a Type I error.
  • is the probability of making Type II error,
    and depends on the true value of .
  • When performing hypothesis tests, we generally
    want to minimize the error probabilities and
    .

14
Power of a hypothesis Test
  • The power of a hypothesis test is the probability
    of not making a Type II error,
  • Thus,
  • Power 1- P( Type II error)
  • 1- ß

15
Taken from Elements of Statistics, by Neil Weiss
16
Example ( Agricultural Books)
  • Pg 393 Q 9.30
  • In 2000, the mean retail price of agriculture
    books was 66.52. A hypothesis test is to be
    performed to decide whether this years main
    retail price of agriculture books has changed
    from the 2000 mean. The null and the alternative
    hypothesis are
  • H0 µ 66.52 and
  • Ha µ ? 66.52
  • where µ is this years mean retail price of
    agricultural books. Explain what each of the
    following would mean.
  • Type 1 error Type II error Correct Decision

17
Example ( Agricultural Books)
  • Pg 393 Q 9.30
  • Now suppose that the results of carrying out the
    hypothesis test leads to the rejection of the
    null hypothesis. Classify that conclusion by
    error type or as a correct decision if in fact
    this years retail price of a agriculture books.
  • Equals the 2000 mean of 66.52
  • Differs from the 2000 mean of 66.52

18
Example Early-Onset Dementia
  • Pg 394 Q 9.32
  • A hypothesis test is to be performed to decide
    whether the
  • mean age at diagnosis of all people with
    early-onset dementia
  • is less than 55 years old. The null and the
    alternative
  • hypothesis are
  • H0 µ 55 years old and
  • Ha µ lt 55 years old
  • where µ is the mean age at diagnosis of all
    people with early onset dementia. Explain what
    each of the following would mean.
  • Type 1 error Type II error Correct Decision

19
Example Early-Onset Dementia
  • Pg 394 Q 9.32
  • Now suppose that the results of carrying out the
    hypothesis test leads to the nonrejection of the
    null hypothesis. Classify that conclusion by
    error type or as a correct decision if in fact
    the mean age at diagnosis of all people with
    early onset dementia
  • is 55 years old.
  • is less than 55 years old.

20
Obtaining Critical Values
  • Suppose that a hypothesis test is to be performed
    at the significance level, a, then the critical
    values must be chosen so that, if the null
    hypothesis is true, the probability is a that the
    test statistic will fall in the rejection region.

21
Examples Critical Values
  • Pg 405
  • A hypothesis test is to be performed for a
    population mean with a null hypothesis of H0 µ
    µ0. Further suppose that the test statistic is
    ,
  • Determine the critical values for the following
    and sketch the graph
  • (Q 9.44) A two-tailed test with a 0.10
  • (Q 9.46) A left-tailed test with a 0.01
  • (Q 9.48) A right-tailed test with a 0.01

22
One Sample z-Test for a Population Mean
  • Necessary assumptions
  • 1. Simple random sample.
  • 2. Population has a normal distribution,
  • or the sample size is large (n 30).
  • 3. s is known.
  • State H0 and Ha.
  • Set the significance level a and determine the
    critical value(s).
  • Compute the test statistic
  • Reject H0 in favor of Ha if the test statistic is
    in the rejection region, otherwise do not reject
    H0.

23
Example Probability Books
  • The mean retail price of probability books was
    81 in 2002.
  • 35 random retail prices of probability books (in
    ) from this year are
  • At the 1 significance level, do the data provide
    sufficient evidence that this years mean price
    increased? Assume s 7.

24
P-Values
  • Assuming H0 is indeed true, the P-value is the
    probability of observing a value of the test
    statistic as or more extreme than that observed.
  • Small P-values (close to 0) provide evidence
    against the null hypothesis.
  • Large p-values do not.

25
P-Values
  • For a right-tailed test,
  • P-value P(Z gt z0).
  • For a two-tailed test,
  • P-value P(Z gtz0).
  • For a left-tailed test,
  • P-value P(Z lt z0).

26
Examples
  • Pg 416
  • Q. 9.90
  • Q. 9.92
  • Q. 9.94

27
Decision Criteria for a hypothesis test using the
P-Value
  • If the P-value is less than or equal to
    significance level, reject the null hypothesis (
    H0 ) otherwise we do not.
  • Example ( Pg 416)
  • Q. 9.78

28
Guidelines for using P-values
29
One Sample z-Test for a Population Mean The
P-value Approach
  • Necessary assumptions
  • 1. Simple random sample.
  • 2. Population has a normal distribution,
  • or the sample size is large (n 30).
  • 3. s is known.
  • State H0 and Ha.
  • Set the significance level a.
  • Compute the test statistic
  • Reject H0 if P-value lt a.

30
Example Calcium from Elementary Statistics by
Neil Weiss
  • Daily calcium intakes (in mg) for 18 randomly
    selected people below the poverty level are
  • Assume the population is approximately normal and
    s 188 mg.
  • Do the data provide sufficient evidence to
    conclude at the 5 significance level the mean
    calcium intake of people below the poverty level
    is less that the RDA of 800 mg?

31
Hypothesis Test for One Population Mean When s
is unknown
  • When the population standard deviation is
    unknown, we use the sample standard deviation.
  • Use t-values instead of the z-values
  • Assume a simple random sample and a normal
    population or large sample with n 30.
  • Use either the critical value or the P-value
    approach

32
P-Values for the t-test
  • For a right-tailed test,
  • P-value P(t gt t0).
  • For a two-tailed
    test,
  • P-value P(t
    gtt0).
  • For a left-tailed test,
  • P-value P(t lt t0).

33
One Sample t-Test for a Population Mean
  • Necessary assumptions
  • 1. Simple random sample.
  • 2. Population has a normal distribution,
  • or the sample size is large (n 30).
  • 3. s is unknown.
  • State H0 and Ha.
  • Set the significance level a and determine the
    critical value(s).
  • Compute the test statistic
  • Reject H0 in favor of Ha if t is in the rejection
    region, and fail to reject H0 otherwise.

34
Examples
  • Pg 429
  • Q. 9.124

35
Hypothesis Tests Summary
  • Two kinds of hypothesis tests for population
    means
  • When s is known, perform a z-test.
  • When s is not known, perform a t-test.
  • Null hypotheses for population means take form of
    µ µ0.
  • Alternative hypotheses for population means take
    one of three forms
  • Can also test using the P-value approach.

36
Finish reading Chapter 9 and do the homework.
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